English

Multi-Dimensional Scaling on Groups

Machine Learning 2020-01-15 v2 Combinatorics Group Theory Representation Theory Machine Learning

Abstract

Leveraging the intrinsic symmetries in data for clear and efficient analysis is an important theme in signal processing and other data-driven sciences. A basic example of this is the ubiquity of the discrete Fourier transform which arises from translational symmetry (i.e. time-delay/phase-shift). Particularly important in this area is understanding how symmetries inform the algorithms that we apply to our data. In this paper we explore the behavior of the dimensionality reduction algorithm multi-dimensional scaling (MDS) in the presence of symmetry. We show that understanding the properties of the underlying symmetry group allows us to make strong statements about the output of MDS even before applying the algorithm itself. In analogy to Fourier theory, we show that in some cases only a handful of fundamental "frequencies" (irreducible representations derived from the corresponding group) contribute information for the MDS Euclidean embedding.

Keywords

Cite

@article{arxiv.1812.03362,
  title  = {Multi-Dimensional Scaling on Groups},
  author = {Mark Blumstein and Henry Kvinge},
  journal= {arXiv preprint arXiv:1812.03362},
  year   = {2020}
}

Comments

Significantly refined presentation of content. Addition of connections to character theory. New more concise title and abstract. 6 pages